Numerical Modeling of the Shape of Agricultural Products on the Example of Cucumber Fruits
Abstract
:1. Introduction
2. Materials and Methods
- ellipsoid model (M1):
- spheroid model (M2), when: , then:
- model combining a truncated cone and two hemispheres (M4)
- model combining a cylinder and two hemispheres (M5)
- model combining two truncated cones and two hemispheres (M6)
3. Results and Discussion
4. Conclusions
- Geometric models and direct measurements of the geometric parameters of agricultural products facilitate the planning of spraying, sorting and packaging operations. These methods enable small-scale farmers to easily determine the geometric parameters (volume, surface area) of raw materials without the use of expensive and sophisticated devices such as 3D scanners. Direct measurements of the geometric parameters of agricultural raw materials are consistent with sustainable development principles and can be applied on a large scale.
- Models where the relative error of measurement does not exceed 5% are recommended when the surface area of cucumbers is calculated with an electronic caliper and mathematical formulas of the presented geometric models. The above condition was fulfilled by the spheroid model (M2) and the model combining two truncated cones and two hemispheres with different diameters (M6). Relative error was higher in the range of 8% to 12% when the surface area of cucumbers was determined with the ellipsoid model (M1), the model combining a truncated cone and two hemispheres (M4) and the model combining a cylinder and two hemispheres (M5). The surface area of cucumbers should not be calculated with the cylinder model (M3) where relative error reached 35%.
- The volume of fruits can be calculated with the use of the ellipsoid model (M1), the spheroid model (M2) and, similarly to surface area measurements, the model combining two truncated cones and two hemispheres with different diameters (M6). The relative error of the above geometric models did not exceed 5.5%. Relative error was higher in the range of 14% to 16% when cucumber volume was determined with the model combining a truncated cone and two hemispheres (M4) and the model combining a cylinder and two hemispheres (M5). The relative error of the cylinder model (M3) was determined at 54%.
- The significance of differences between the mean values of surface area was determined in the Kruskal-Wallis test, and no significant differences were observed in models M1, M2, M4 and M5. However, models M1, M4 and M5 cannot be used to determine the surface area of cucumber fruit due to high mean relative error at 8.37%, 9.98% and 11.44%, respectively.
- In the literature, the mathematical formula for calculating the volume of an ellipsoid (M1) is often used to determine the volume of agricultural products with an ellipsoidal shape. Relative error is estimated at 3% when the volume of ellipsoidal fruits is calculated with the above mathematical formula.
- In the group of the evaluated methods for determining the geometric parameters of agricultural materials, 3D scanning is the most informative approach. Numerical models support the determination of a full range of geometric parameters (dimensions, area, volume) of entire objects and their fragments. The shape of the analyzed object is stored in computer memory as a cloud of points, and can be used to measure volume without the involvement of displacement methods where the sample is immersed in liquid. Numerical models can also be archived and used for future research.
- The measurable result of the study was the development of models supporting the determination of the geometric parameters (surface area, volume) of agricultural materials based on their basic dimensions (length, width, thickness). In most cases, the proposed models support the determination of the above geometric parameters with a relative error below 5% within a short period time. Therefore, they can be used in the research and design of new cucumber processing equipment.
- Further research should focus on the development of models of agricultural raw materials that facilitate the determination of geometric parameters for planning and performing of production processes in agriculture.
Author Contributions
Funding
Conflicts of Interest
References
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Variable1 | Mean | Range | Standard Deviation |
---|---|---|---|
L (mm) | 113.14 | 39.10 | 9.94 |
W (mm) | 37.23 | 13.04 | 3.28 |
T (mm) | 35.47 | 14.82 | 3.31 |
A 3D (mm2) | 111.25 | 70.54 | 16.12 |
V 3D (mm3) | 77.26 | 80.73 | 18.89 |
3D-3D scan |
Surface Area A (Kruskal-Wallis Test) H(6, N = 350) = 132.2065; p = 0.000 | ||||
---|---|---|---|---|
Probability of Multiple Comparisons | ||||
Measurement Method | Number of Observations N | Rank Sum | Mean Rank | Mean |
3D | 50 | 9288.50 | 185.77 | 111.25 bc |
M1 | 50 | 6939.50 | 138.79 | 101.71 a |
M2 | 50 | 7863.00 | 157.26 | 105.93 ab |
M3 | 50 | 15,564.00 | 311.28 | 150.45 d |
M4 | 50 | 6181.00 | 123.62 | 100.17a |
M5 | 50 | 5737.00 | 114.74 | 98.57 a |
M6 | 50 | 9852.00 | 197.04 | 114.06 c |
Volume V (Kruskal-Wallis Test) H(6, N = 350) = 124.2550; p = 0.000 | ||||
---|---|---|---|---|
Probability of Multiple Comparisons | ||||
Measurement Method | Number of Observations N | Rank Sum | Mean Rank | Mean |
3D | 50 | 8301.00 | 166.02 | 77.26 a |
M1 | 50 | 8910.00 | 178.20 | 79.21 a |
M2 | 50 | 8982.00 | 179.64 | 79.29 a |
M3 | 50 | 15,085.00 | 301.70 | 118.93 c |
M4 | 50 | 5492.00 | 109.84 | 65.85 b |
M5 | 50 | 5262.00 | 105.24 | 65.16 b |
M6 | 50 | 9393.00 | 187.86 | 81.27 a |
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Anders, A.; Choszcz, D.; Markowski, P.; Lipiński, A.J.; Kaliniewicz, Z.; Ślesicka, E. Numerical Modeling of the Shape of Agricultural Products on the Example of Cucumber Fruits. Sustainability 2019, 11, 2798. https://doi.org/10.3390/su11102798
Anders A, Choszcz D, Markowski P, Lipiński AJ, Kaliniewicz Z, Ślesicka E. Numerical Modeling of the Shape of Agricultural Products on the Example of Cucumber Fruits. Sustainability. 2019; 11(10):2798. https://doi.org/10.3390/su11102798
Chicago/Turabian StyleAnders, Andrzej, Dariusz Choszcz, Piotr Markowski, Adam Józef Lipiński, Zdzisław Kaliniewicz, and Elwira Ślesicka. 2019. "Numerical Modeling of the Shape of Agricultural Products on the Example of Cucumber Fruits" Sustainability 11, no. 10: 2798. https://doi.org/10.3390/su11102798
APA StyleAnders, A., Choszcz, D., Markowski, P., Lipiński, A. J., Kaliniewicz, Z., & Ślesicka, E. (2019). Numerical Modeling of the Shape of Agricultural Products on the Example of Cucumber Fruits. Sustainability, 11(10), 2798. https://doi.org/10.3390/su11102798